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Vocal Folds Disorders Detection and Classification in Endoscopic Narrow-Band Images

机译:内窥镜窄带图像中人声折叠障碍的检测与分类

摘要

The diagnosis of vocal folds (VF) diseases is error- prone due to the large variety of diseases that can affect them. VF lesions can be divided in nodular, e.g. nodules, polyps and cysts, and diffuse, e.g. hyperplastic laryngitis and carcinoma. By endoscopic examination, the clinician traditionally evaluates the presence of macroscopic formations and mucosal vessels alteration. Endoscopic narrow-band imaging (NBI) has recently started to be employed since it provides enhanced vessels contrast as compared to classical white-light endoscopy. This work presents a preliminary study on the development of an automatic diagnostic tool based on the assessment of vocal cords symmetry in NBI images. The objective is to identify possible protruding mass lesions on which subsequent vessels analysis may be performed. The method proposed here is based on the segmentation of the glottal area (GA) from the endoscopic images, based on which the right and the left portions of the vocal folds are detected and analyzed for the detection of protruding areas. The obtained information is then used to classify the VF edges as healthy or pathological. Results from the analysis of 22 endoscopic NBI images demonstrated that the proposed algorithm is robust and effective, providing a 100% success rate in the classification of VF edges as healthy or pathological. Such results support the investment in further research to expand and improve the algorithm presented here, potentially with the addition of vessels analysis to determine the pathological classification of detected protruding areas.
机译:声带(VF)疾病的诊断容易出错,因为会影响它们的多种疾病。 VF病变可分为结节状,例如结节,息肉和囊肿并扩散,例如增生性喉炎和癌。通过内窥镜检查,临床医生传统上会评估宏观结构和粘膜血管改变的存在。内窥镜窄带成像(NBI)最近开始使用,因为与传统的白光内窥镜相比,它提供了增强的血管对比度。这项工作提出了基于对NBI图像中声带对称性评估的自动诊断工具的开发的初步研究。目的是确定可能在其上进行后续血管分析的突出肿块。此处提出的方法基于从内窥镜图像中声门区域(GA)的分割,基于该分割,对声带的左右部分进行检测和分析以检测突出区域。然后,将获得的信息用于将VF边缘分类为健康或病理。对22幅内窥镜NBI图像进行分析的结果表明,该算法稳健有效,在将VF边缘分类为健康或病理性方面提供了100%的成功率。这样的结果支持对进一步研究进行投资,以扩展和改进此处介绍的算法,可能还需要添加血管分析来确定检测到的突出区域的病理学分类。

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